基于PSO-BP算法的模糊PID掘进机摆速控制策略

Feng Li, Yongjie Li, Changqing Yan, Chenyin Ma, Chi Liu, Qihan Suo
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引用次数: 3

摘要

针对煤矿中煤的硬度发生变化时,臂式掘进机无法快速调整切削摆速以适应煤岩硬度的问题,提出了一种掘进摆速控制策略。该策略首先利用PSO-BP神经网络构建掘进机切削负荷识别器,为调整掘进机切削摆动速度提供依据;其次,基于模糊算法对PID控制进行了优化,建立了模糊PID控制器,提高了对切削摆速的调节效率;最后,在Matlab/Simulink中建立了掘进机切削摆速仿真控制系统模型,并对所提出的掘进机切削摆速控制策略进行了仿真。仿真实验结果表明,采用PSO神经网络算法与模糊PID控制相结合的掘进机摆速调节系统,响应速度和控制精度明显提高,具有良好的优越性和稳定性。基于粒子群BP神经网络算法与模糊PID控制相结合的策略,可以为稳定掘进机切削电机功率,提高巷道工作效率提供一定的理论指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Swing Speed Control Strategy of Fuzzy PID Roadheader Based on PSO-BP Algorithm
Aiming at the problem that the boom-type roadheader cannot quickly adjust the cutting swing speed to adapt to the hardness of the coal and rock when the coal hardness changes in coal mines, a control strategy for the driving swing speed is proposed. In this strategy, firstly, the PSO-BP neural network is used to construct a cutting load recognizer to provide a basis for adjusting the cutting swing speed of the roadheader; secondly, the PID control is optimized based on the fuzzy algorithm, and the fuzzy PID controller is established to improve the regulation of the cutting The efficiency of the swing speed; Finally, the roadheader swing speed simulation control system model is built in Matlab/Simulink, and the proposed roadheader cutting swing speed control strategy is simulated. The simulation experiment results show that the roadheader swing speed adjustment system using PSO neural network algorithm combined with fuzzy PID control has significantly improved response speed and control accuracy, and has good superiority and stability. The strategy based on particle swarm BP neural network algorithm combined with fuzzy PID control can provide certain theoretical guidance for stabilizing the cutting motor power of the roadheader and improving the efficiency of roadway work.
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